Inspired by the human ability to perform complex manipulation in the complete absence of vision (like retrieving an object from a pocket), the robotic manipulation field is motivated to develop new methods for tactile-based object interaction. However, tactile sensing presents the challenge of being an active sensing modality: a touch sensor provides sparse, local data, and must be used in conjunction with effective exploration strategies in order to collect information. In this work, we focus on the process of guiding tactile exploration, and its interplay with task-related decision making. We propose TANDEM (TActile exploration aNd DEcision Making), an architecture to learn efficient exploration strategies in conjunction with decision making. Our approach is based on separate but co-trained modules for exploration and discrimination. We demonstrate this method on a tactile object recognition task, where a robot equipped with a touch sensor must explore and identify an object from a known set based on binary contact signals alone. TANDEM achieves higher accuracy with fewer actions than alternative methods and is also shown to be more robust to sensor noise.
翻译:受人类在完全缺乏视觉的情况下进行复杂操纵的能力的启发(如从口袋中获取物体),机器人操纵场被激励为开发基于触觉的物体相互作用的新方法。然而,触觉感应提出了主动感测方式的挑战:触摸传感器提供稀少的本地数据,必须与有效的探索战略结合使用,以便收集资料。在这项工作中,我们侧重于引导触觉探索的过程及其与任务相关决策的相互作用。我们建议TANDEM(Tactile exploration a Nd Decision Making),这是一个结合决策学习有效探索策略的架构。我们的方法以单独但经过共同训练的探索和歧视模块为基础。我们用触摸物体识别任务展示了这种方法,在那里,配备触摸传感器的机器人必须单独探索并识别以二进式接触信号为基础的已知成套物体。TANDEM(TAMDE)以比替代方法少的行动更准确,而且显示对传感器噪音更可靠。